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UWB Positioning with GeneralizedGaussian Mixture Filters

机译:使用广义高斯混合滤波器的UWB定位

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摘要

Low-complexity Bayesian filtering for nonlinear models is challenging. Approximative methods based on Gaussian mixtures (GM) and particle filters are able to capture multimodality, but suffer from high computational demand. In this paper, we provide an in-depth analysis of a generalized GM (GGM), which allows component weights to be negative, and requires significantly fewer components than the traditional GM for ranging models. Based on simulations and tests with real data from a network of UWB nodes, we show how the algorithm’s accuracy depends on the uncertainty of the measurements. For nonlinear ranging the GGM filter outperforms the extended Kalman filter (EKF) in both positioning accuracy and consistency in environments with uncertain measurements, and requires only slightly higher computational effort when the number of measurement channels is small. In networks with highly reliable measurements, the GGM filter yields similar accuracy and better consistency than the EKF.
机译:针对非线性模型的低复杂度贝叶斯滤波具有挑战性。基于高斯混合(GM)和粒子滤波器的近似方法能够捕获多模态,但计算量很大。在本文中,我们提供了对通用GM(GGM)的深入分析,它使组件权重为负,并且对于测距模型而言,与传统GM相比,所需组件的数量明显减少。基于来自UWB节点网络的真实数据的仿真和测试,我们展示了算法的准确性如何取决于测量的不确定性。对于非线性测距,在测量不确定的环境中,GMM滤波器在定位精度和一致性方面均优于扩展卡尔曼滤波器(EKF),并且在测量通道数较少时仅需要稍高的计算量。在具有高度可靠的测量结果的网络中,与EKF相比,GGM滤波器具有相似的精度和更好的一致性。

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